Machine Learning-based Modulation Format Identification and Optical Performance Monitoring Techniques Implementation

Pukhrambam Puspa Devi, Vincent, J. W. Simatupang
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引用次数: 2

Abstract

In this paper, machine learning-based techniques are used to solve and analyze the modulation format recognition problem. The combination of intelligent software and high-performance hardware provides a large scope for innovation in optical networking. Machine learning algorithms can use a large amount of data available from the network monitors to learn and make the network more robust. This is a problem in optical communication that consists of defining the type of digital modulation process in which an electrical signal should be sent. A dataset to represent realistic transmission behaviors was generated using a simulator based on a Gaussian noise model. A multi-layer perceptron was used and tested with different architectures to show that a high level of accuracy is achievable with machine learning. An analysis of the input features was made by using the select K best features method. Finally, an attempt to visualize the data in 2-dimension was made using the Principal Component Analysis (PCA) and t-distributed Stochastic Neighbor Embedding (t-SNE) methods to reduce the dimensionality of the input features and see their relationships.
基于机器学习的调制格式识别与光学性能监测技术实现
本文采用基于机器学习的技术来解决和分析调制格式识别问题。智能软件和高性能硬件的结合为光网络的创新提供了广阔的空间。机器学习算法可以使用来自网络监视器的大量可用数据来学习并使网络更加鲁棒。这是光通信中的一个问题,它包括定义应发送电信号的数字调制过程的类型。利用基于高斯噪声模型的仿真器生成了真实传输行为的数据集。我们使用了一个多层感知器,并在不同的架构下进行了测试,以证明通过机器学习可以实现高水平的准确性。采用选择K个最优特征的方法对输入特征进行分析。最后,尝试使用主成分分析(PCA)和t分布随机邻居嵌入(t-SNE)方法将数据可视化到二维,以降低输入特征的维数并查看它们之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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